Feature point (FP) detection is a fundamental step of many computer vision tasks. However, FP detectors are usually designed for low dynamic range (LDR) images. In scenes with extreme light conditions, LDR images present saturated pixels, which degrade FP detection. On the other hand, high dynamic range (HDR) images usually present no saturated pixels but FP detection algorithms do not take advantage of all the information present in such images. FP detection frequently relies on differential methods, which work well in LDR images. However, in HDR images, the differential operation response in bright areas overshadows the response in dark areas. As an alternative to standard FP detection methods, this study proposes an FP detector based on a coefficient of variation (CV) designed for HDR images. The CV operation adapts its response based on the standard deviation of pixels inside a window, working well in both dark and bright areas of HDR images. The proposed and standard detectors are evaluated by measuring their repeatability rate (RR) and uniformity. Our proposed detector shows better performance when compared to other standard state-of-the-art detectors. In uniformity metric, our proposed detector surpasses all the other algorithms. In other hand, when using the repeatability rate metric, the proposed detector is worse than Harris for HDR and SURF detectors.
翻译:特征点(FP)检测是许多计算机视觉任务的基本步骤。然而,FP检测器通常是为低动态范围(LDR)图像设计的。在极端光照情况下,LDR图像呈现饱和像素,这会降低FP检测质量。另一方面,高动态范围(HDR)图像通常不会出现饱和像素,但FP检测算法没有发挥出这些图片中的所有信息。FP检测通常依赖于差分方法,在LDR图像中效果很好。然而,在HDR图像中,亮区域的差分操作响应会压过暗区域的响应。作为标准FP检测方法的替代方法,本研究提出了一种基于变异系数(CV)的HDR图像FP检测器。CV操作基于窗口内像素的标准差自适应地调整其响应,在HDR图像的暗区域和明区域都有效。通过测量重复率(RR)和均匀性来评估所提出的方法和标准检测器。与其他标准最先进的检测器相比,我们提出的检测器表现更好。在均匀性度量中,我们提出的检测器胜过所有其他算法。然而,在使用重复率指标时,所提出的检测器比Harris和SURF检测器要差。